Skip to main content
. 2019 Aug;16(8):601–607. doi: 10.11909/j.issn.1671-5411.2019.08.002

Table 2. Overview of ML algorithms used to assess ECG analysis.

Authors ML algorithm Aim Performance
Isin, et al.[30] Deep neural network To detect automatically arrhythmia on ECG Correct recognition rate: 98.5%
Accuracy: 92%
Attia, et al.[31] Convolutional neural network To identify asymptomatic left ventricular systolic dysfunction AUC: 0.93
Sensitivity: 86.3%
Specificity: 85.7%
Accuracy: 85.7%
Galloway, et al.[32] Convolutional neural network Screening of hyperkalemia in patients with chronic kidney disease AUC: 0.853–0.883

AUC: area under the curve; ECG: electrocardiography; ML: machine learning.